US7523076B2 - Selecting a profile model for use in optical metrology using a machine learning system - Google Patents
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Definitions
- the present application relates to metrology of structures formed on semiconductor wafers, and more particularly to selecting a profile model for use in optical metrology using a machine learning system.
- Optical metrology involves directing an incident beam at a structure, measuring the resulting diffracted beam, and analyzing the diffracted beam to determine a feature of the structure.
- optical metrology is typically used for quality assurance. For example, after fabricating a periodic grating in proximity to a semiconductor chip on a semiconductor wafer, an optical metrology system is used to determine the profile of the periodic grating. By determining the profile of the periodic grating, the quality of the fabrication process utilized to form the periodic grating, and by extension the semiconductor chip proximate the periodic grating, can be evaluated.
- One conventional optical metrology system uses a diffraction modeling technique, such as rigorous coupled wave analysis (RCWA), to analyze the diffracted beam. More particularly, in the diffraction modeling technique, a model diffraction signal is calculated based, in part, on solving Maxwell's equations. Calculating the model diffraction signal involves performing a large number of complex calculations, which can be time consuming and costly.
- RCWA rigorous coupled wave analysis
- a profile model can be selected for use in examining a structure formed on a semiconductor wafer using optical metrology by obtaining an initial profile model having a set of profile parameters.
- a machine learning system is trained using the initial profile model.
- a simulated diffraction signal is generated for an optimized profile model using the trained machine learning system, where the optimized profile model has a set of profile parameters with the same or fewer profile parameters than the initial profile model.
- a determination is made as to whether the one or more termination criteria are met. If the one or more termination criteria are met, the optimized profile model is modified and another simulated diffraction signal is generated using the same trained machine learning system.
- FIG. 1 depicts an exemplary optical metrology system
- FIGS. 2A-2E depict exemplary profile models
- FIG. 3 depicts an exemplary process of selecting a profile model
- FIG. 4 depicts an exemplary neural network
- FIG. 5 depicts an exemplary process of training a machine learning system
- FIG. 6 depicts an exemplary process of testing a machine learning system
- FIG. 7 depicts another exemplary process of testing a machine learning system
- FIG. 8 depicts two exemplary profile models.
- an optical metrology system 100 can be used to examine and analyze a structure on a semiconductor wafer.
- optical metrology system 100 can be used to determine a feature of a periodic grating 102 formed on wafer 104 .
- periodic grating 102 can be formed in test areas on wafer 104 , such as adjacent to a device formed on wafer 104 .
- periodic grating 102 can be formed in an area of the device that does not interfere with the operation of the device or along scribe lines on wafer 104 .
- the device can be measured directly.
- optical metrology system 100 can include an optical metrology device with a source 106 and a detector 112 .
- Periodic grating 102 is illuminated by an incident beam 108 from source 106 .
- incident beam 108 is directed onto periodic grating 102 at an angle of incidence ⁇ i with respect to normal ⁇ right arrow over (n) ⁇ of periodic grating 102 and an azimuth angle ⁇ (i.e., the angle between the plane of incidence beam 108 and the direction of the periodicity of periodic grating 102 ).
- Diffracted beam 110 leaves at an angle of ⁇ d with respect to normal ⁇ right arrow over (n) ⁇ and is received by detector 112 .
- Detector 112 converts the diffracted beam 110 into a measured diffraction signal, which can include reflectance, tan ( ⁇ ), cos ( ⁇ ), Fourier coefficients, and the like.
- Optical metrology system 100 also includes a processing module 114 configured to receive the measured diffraction signal and analyze the measured diffraction signal. As described below, a feature of periodic grating 102 can then be determined using a library-based process or a regression-based process. Additionally, other linear or non-linear profile model extraction techniques are contemplated.
- the measured diffraction signal is compared to a library of simulated diffraction signals. More specifically, each simulated diffraction signal in the library is associated with a profile model of the structure.
- the profile model associated with the matching simulated diffraction signal in the library is presumed to represent the actual profile of the structure. A feature of the structure can then be determined based on the profile model associated with the matching simulated diffraction signal.
- processing module 114 compares the measured diffraction signal to simulated diffraction signals stored in a library 116 .
- Each simulated diffraction signal in library 116 is associated with a profile model.
- the profile model associated with the matching simulated diffraction signal in library 116 can be presumed to represent the actual profile of periodic grating 102 .
- the set of profile models stored in library 116 can be generated by characterizing a profile model using a set of profile parameters, then varying the set of profile parameters to generate profile models of varying shapes and dimensions.
- the process of characterizing a profile model using a set of profile parameters can be referred to as parameterizing.
- profile model 200 can be characterized by profile parameters h 1 and w 1 that define its height and width, respectively.
- additional shapes and features of profile model 200 can be characterized by increasing the number of profile parameters.
- profile model 200 can be characterized by profile parameters h 1 , w 1 , and w 2 that define its height, bottom width, and top width, respectively.
- the width of profile model 200 can be referred to as the critical dimension (CD).
- profile parameter w 1 and w 2 can be described as defining the bottom CD and top CD, respectively, of profile model 200 .
- various types of profile parameters can be used to characterize profile model 200 , including angle of incident (AOI), pitch, n & k, hardware parameters (e.g., polarizer angle), and the like.
- the set of profile models stored in library 116 can be generated by varying the profile parameters that characterize the profile model. For example, with reference to FIG. 2B , by varying profile parameters h 1 , w 1 , and w 2 , profile models of varying shapes and dimensions can be generated. Note that one, two, or all three profile parameters can be varied relative to one another.
- the profile parameters of the profile model associated with a matching simulated diffraction signal can be used to determine a feature of the structure being examined.
- a profile parameter of the profile model corresponding to a bottom CD can be used to determine the bottom CD of the structure being examined.
- the number of profile models and corresponding simulated diffraction signals in the set of profile models and simulated diffraction signals stored in library 116 depends, in part, on the range over which the set of profile parameters and the increment at which the set of profile parameters are varied.
- the profile models and the simulated diffraction signals stored in library 116 are generated prior to obtaining a measured diffraction signal from an actual structure.
- the range and increment (i.e., the range and resolution) used in generating library 116 can be selected based on familiarity with the fabrication process for a structure and what the range of variance is likely to be.
- the range and/or resolution of library 116 can also be selected based on empirical measures, such as measurements using atomic force microscopy (AFM), scanning electron microscopy (SEM), and the like.
- the measured diffraction signal is compared to a simulated diffraction signal generated prior to the comparison (i.e., a trial simulated diffraction signal) using a set of profile parameters (i.e., trial profile parameters) for a profile model. If the measured diffraction signal and the trial simulated diffraction signal do not match or when the difference of the measured diffraction signal and the trial simulated diffraction signal is not within a preset or matching criterion, another trial simulated diffraction signal is generated using another set of profile parameters for another profile model, then the measured diffraction signal and the newly generated trial simulated diffraction signal are compared.
- a simulated diffraction signal generated prior to the comparison i.e., a trial simulated diffraction signal
- trial profile parameters i.e., trial profile parameters
- the profile model associated with the matching trial simulated diffraction signal is presumed to represent the actual profile of the structure.
- the profile model associated with the matching trial simulated diffraction signal can then be used to determine a feature of the structure being examined.
- processing module 114 can generate a trial simulated diffraction signal for a profile model, and then compare the measured diffraction signal to the trial simulated diffraction signal. As described above, if the measured diffraction signal and the trial simulated diffraction signal do not match or when the difference of the measured diffraction signal the trial simulated diffraction signals is not within a preset or matching criterion, then processing module 114 can iteratively generate another trial simulated diffraction signal for another profile model.
- the subsequently generated trial simulated diffraction signal can be generated using an optimization algorithm, such as global optimization techniques, which includes simulated annealing, and local optimization techniques, which includes steepest descent algorithm.
- the trial simulated diffraction signals and profile models can be stored in a library 116 (i.e., a dynamic library).
- the trial simulated diffraction signals and profile models stored in library 116 can then be subsequently used in matching the measured diffraction signal.
- library 116 can be omitted from optical metrology system 100 .
- the accuracy, complexity, and length of time needed to perform a library-based process and/or regression-based process depends, in part, on the complexity of the profile model used. For example, increasing the complexity of the profile model by adding a profile parameter can increase accuracy. However, the increased complexity of the profile model can increase the complexity and the amount of time needed to perform the library-based process and/or regression-based process.
- an optimal profile model to be used in a library-based process and/or regression-based process is selected using exemplary process 300 .
- a measured diffraction signal is obtained.
- the measured diffraction signal from a structure to be examined is obtained using an optical metrology device, such as a reflectometer, ellipsometer, and the like.
- the structure used to obtain the measured diffraction signal can be the actual structure to be examined or a representative structure of the actual structure to be examined.
- an initial profile model is obtained.
- the initial profile model has a set of profile parameters that characterize the structure to be examined.
- the initial profile model is the most complex profile model that will be used in process 300 , and eventually the library-based process and/or regression-based process.
- the initial profile model used in the first iteration of process 300 can include six profile parameters.
- the profile model used in the second iteration of process can be simplified to include five profile parameters.
- the initial profile model can be selected by a user or can be automatically selected using a default profile model.
- a machine learning system is trained using the initial profile model.
- the machine learning system employs a machine learning algorithm, such as back-propagation, radial basis function, support vector, kernel regression, and the like.
- a machine learning algorithm such as back-propagation, radial basis function, support vector, kernel regression, and the like.
- the machine learning system is a neural network 400 using a back-propagation algorithm.
- Neural network 400 includes an input layer 402 , an output layer 404 , and a hidden layer 406 between input layer 402 and output layer 404 .
- Input layer 402 and hidden layer 406 are connected using links 408 .
- Hidden layer 406 and output layer 404 are connected using links 410 . It should be recognized, however, that neural network 400 can include any number of layers connected in various configurations.
- input layer 402 includes one or more input nodes 412 .
- an input node 412 in input layer 402 corresponds to a profile parameter of the profile model that is inputted into neural network 400 .
- the number of input nodes 412 corresponds to the number of profile parameters used to characterize the profile model. For example, if a profile model is characterized using two profile parameters (e.g., top and bottom critical dimensions), input layer 402 includes two input nodes 412 , where a first input node 412 corresponds to a first profile parameter (e.g., a top critical dimension) and a second input node 412 corresponds to a second profile parameter (e.g., a bottom critical dimension).
- a first profile parameter e.g., a top critical dimension
- a second input node 412 corresponds to a second profile parameter (e.g., a bottom critical dimension).
- output layer 404 includes one or more output nodes 414 .
- each output node 414 is a linear function. It should be recognized, however, that each output node 414 can be various types of functions.
- an output node 414 in output layer 404 corresponds to a dimension of the simulated diffraction signal that is outputted from neural network 400 .
- the number of output nodes 414 corresponds to the number of dimensions used to characterize the simulated diffraction signal.
- output layer 404 includes five output nodes 414 , wherein a first output node 414 corresponds to a first dimension (e.g., a first wavelength), a second output node 414 corresponds to a second dimension (e.g., a second wavelength), etc.
- neural network 400 can be separated into a plurality of sub networks based on separate components of the simulated diffraction signal and/or dimensions of the components of the simulated diffraction signal.
- hidden layer 406 includes one or more hidden nodes 416 .
- each hidden node 416 is a sigmoidal transfer function or a radial basis function. It should be recognized, however, that each hidden node 416 can be various types of functions.
- an exemplary process 500 is depicted for training a machine learning system.
- the machine learning system is trained using a set of training input data and a set of training output data, where an input data in the set of training input data has a corresponding output data in the set of training output data to form an input and an output data pair.
- the set of training input data is obtained.
- the training input data includes a set of profile models generated based on the initial profile model. More particularly, the set of profile models is generated by varying one or more profile parameters that characterize the initial profile model, either alone or in combination. The one or more profile parameters are varied over one or more ranges based on the expected range of variability in the actual profile of the structure to be examined, the expected range of variability is determined either empirically or through experience.
- the set of profile models used as the training input data can be generated by varying the profile parameter in the initial profile model corresponding to the bottom critical dimension between x 1 and x 2 .
- the training output data includes a set of diffraction signals.
- a diffraction signal in the set of diffraction signals used as the training output data corresponds to a profile model in the set of profile models used as the training input data.
- Each diffraction signal in the set of diffraction signals can be generated based on each profile model in the set of profile models using a modeling technique, such as rigorous coupled wave analysis (RCWA), integral method, Fresnel method, finite analysis, modal analysis, and the like.
- RCWA rigorous coupled wave analysis
- each diffraction signal in the set of diffraction signals can be generated based on each profile model in the set of profile models using an empirical technique, such as measuring a diffraction signal using an optical metrology device, such as an ellipsometer, reflectometer, atomic force microscope (AFM), scanning electron microscope (SEM), and the like.
- an optical metrology device such as an ellipsometer, reflectometer, atomic force microscope (AFM), scanning electron microscope (SEM), and the like.
- simulated diffraction signals are generated with the machine learning system using the training input data as inputs to the machine learning system.
- a determination is made as to whether one or more termination criteria are met.
- a termination criterion can be based on an analysis of the diffraction signals (i.e., the diffraction signals in the training output data and the simulated diffraction signals generated by the machine learning system), such as a cost function value, a Goodness-of-Fit (GOF) value, various curve fitting metrics, and the like.
- a termination criterion can be based on an analysis of the profile models, such as correlation, sensitivity, confidence interval, and the like. It should be recognized that the determination made in step 508 can be based on a combination of any two or more termination criteria.
- V 1 and V 2 are two vectors of size n
- cost function of V 1 relative to V 2 is:
- i represents the ith member of the vector
- p is an arbitrary number associated with the metric.
- the first vector is the set of signal values for a first diffraction signal
- the second vector is the corresponding set of signal values for a second diffraction signal.
- One commonly used formula for GOF between a first signal S 1 compared to a second signal S 2 is:
- a correlation coefficient, r, between two profile parameters can be calculated using the formula:
- r ⁇ i ⁇ ⁇ ( x i - x _ ) ⁇ ( y i - y _ ) ⁇ i ⁇ ⁇ ( x i - x _ ) 2 ⁇ ⁇ i ⁇ ⁇ ( y i - y _ ) 2
- x i and y i is a pair of profile parameters
- x is the mean of x i 's
- y is the mean of y i 's.
- the value of r lies between ⁇ 1 and +1 inclusive.
- a correlation coefficient value of +1 can correspond to complete positive correlation and a value of ⁇ 1 can correspond to complete negative correlation.
- a value of r close to zero can correspond to the x and y profile parameters not being correlated.
- a sensitivity of a diffraction signal to changes in one or more profile parameters can be determined by changing one profile parameter by a small amount and keeping the other profile parameters constant.
- the sensitivity of profile parameter x 0 may be tested by adding one nanometer to the nominal value while keeping profile parameters x 1 , x 2 , and x 3 at nominal value. If there is no noticeable change in the diffraction signal (x 0 at nominal plus 1 nm), then x 0 has low sensitivity.
- the other profile parameters can similarly be changed while holding the rest constant in order to test the sensitivity of each profile parameter.
- the sensitivity of a profile parameter may be quantitatively expressed by calculating the sum-square-error (SSE) of the changed diffraction signal compared to the diffraction signal using nominal values.
- SSE sum-square-error
- i the signal point, typically at a preset wavelength
- n the number of signal points
- S 0 the diffraction signal value using nominal values of profile parameters
- S 1 the diffraction signal value using nominal plus change in one of the profile parameters.
- a confidence interval of a profile parameter can be determined by the amount of change from a nominal value of the profile parameter, where the change in the diffraction signals is greater than the noise level.
- the noise in the diffraction signals may be due to system noise, for example, noise from the measurement devices, or the noise may be simulated.
- the confidence interval is generally expressed as a multiple of the standard deviation sigma, ⁇ , of the profile parameter.
- a confidence interval of 3 sigmas can be used.
- the confidence interval is typically calculated from a given set of sample input data representing actual measurements off the wafer structure.
- the confidence interval may also be calculated using simulated random noise introduced in the measurement data for the profile parameter.
- step 506 is repeated.
- the machine learning system is adjusted.
- the weights used in the functions or the number of hidden nodes of the neural network can be adjusted.
- step 506 is repeated to generate diffraction signals using the training input data as inputs to the adjusted machine learning system.
- a new set of training input and output data can be obtained, and then diffraction signals are generated using the new training input data as inputs to the machine learning system.
- training process 500 can include the use of an optimization technique, such as gradient descent, linear programming, quadratic programming, simulated annealing, Marquardt-Levenberg algorithm, and the like. Additionally, training process 500 is depicted as batch training, where diffraction signals are generated for all of the profile models in the training input data as a batch. For a more detailed description of batch training, see “Neural Networks” by Simon Haykin, which has been cited above. It should be recognized, however, that a diffraction signal can be generated for each of the profile models in the training input data one at a time.
- training process 500 depicted in FIG. 5 illustrates a back-propagation algorithm.
- various training algorithms can be used, such as radial basis network, support vector, kernel regression, and the like.
- an exemplary process 600 is depicted for testing a machine learning system.
- the machine learning system can be tested to confirm that it has been properly trained. It should be recognized, however, that this testing process can be omitted in some applications.
- a set of testing input data is obtained.
- a set of testing output data is obtained.
- the testing input data includes a set of profile models, and the testing output data includes a set of diffraction signals.
- the set of testing input data and set of testing output data can be obtained using the same process and techniques described above during the training process.
- the set of testing input data and set of testing output data can be the same as or a subset of the training input data and training output data.
- the set of testing input data and set of testing out data can be different than the training input data and training output data.
- simulated diffraction signals are generated with the machine learning system using the testing input data as inputs to the machine learning system.
- a determination is made as to whether one or more termination criteria are met.
- a termination criterion can be based on an analysis of simulated diffraction signals (i.e., the simulated diffraction signals in the training output data and the simulated diffraction signals generated by the machine learning system), such as a cost function value, a Goodness-of-Fit (GOF) value, various curve fitting metrics, and the like.
- a termination criterion can be based on an analysis of the profile models, such as correlation, sensitivity, confidence interval, and the like. It should be recognized that the determination made in 608 can be based on a combination of any two or more termination criteria.
- the machine learning system is re-trained.
- the machine learning system can be adjusted. For example, when the machine learning system is a neural network, the weights used in the functions or the number of hidden nodes of the neural network can be adjusted. Alternatively or additionally, the selection and number of the training input and output variables can be adjusted.
- FIG. 7 another exemplary process 700 is depicted for testing or validating a machine learning system.
- a first machine learning system can be tested or validated by training a second machine learning system.
- the second machine learning system is trained using the same set of training data used to train the first machine learning system.
- the training input data used in training the first machine learning system is used as the training output data in training the second machine learning system
- the training output data used in training the first machine learning system is used as the training input data in training the second machine learning system.
- the second machine learning system is trained using diffraction signals as inputs and profile models as outputs.
- step 704 one or more profile models are used as inputs to generate one or more simulated diffraction signals using the first machine learning system.
- step 706 the one or more simulated diffraction signals generated by the first machine learning system are used as inputs to generate one or more profile models using the second machine learning system.
- step 708 the one or more profile models generated by the second machine learning system and the one or more profile models that were used as inputs into the first machine learning system can be analyzed. For example, if the difference between the profile models is within an acceptable tolerance, the first machine learning system is validated.
- ERM empirical risk minimization
- the machine learning system is used to generate a simulated diffraction signal for an optimized profile model.
- the optimized profile model has a set of profile parameters with the same or fewer profile parameters than the initial profile parameter. Note that the optimized profile model can be the same as the initial profile model in the first iteration of process 300 .
- a termination criterion can be based on an analysis of simulated diffraction signals (i.e., the simulated diffraction signals in the training output data and the simulated diffraction signals generated by the machine learning system), such as a cost function value, a Goodness-of-Fit (GOF) value, various curve fitting metrics, and the like.
- a termination criterion can be based on an analysis of the profile models, such as correspondence, correlation, sensitivity, confidence interval, and the like. It should be recognized that the determination made in 310 can be based on a combination of any two or more termination criteria.
- a cost function value can be determined between the simulated diffraction signal and the measured diffraction signal. The determined cost function can then be compared to a preset cost function value to determine if the determined cost function value is less than or equal to the preset cost function value.
- the preset cost function value may be set at a specific number, for example, 0.05.
- a GOF value can be determined between the simulated diffraction signal and the measured diffraction signal. The determined GOF value can then be compared to a preset GOF value to determine if the determined GOF value is less than or equal to the preset GOF value.
- the preset GOF value may be set at a specific number, for example 0.95.
- correspondence is included as a termination criterion, a correspondence is obtained between the profile parameters of the optimized profile model and the dimensions of the actual profile that corresponds to the measured diffraction signal.
- the dimensions of the actual profile can be obtained using SEM.
- a correlation coefficient can be determined between a pair of profile parameters of the optimized profile model. The determined correlation coefficient can then be compared to a preset correlation coefficient to determine if the determined correlation coefficient is less than or equal to the preset correlation coefficient.
- a sensitivity can be determined for each profile parameter of the optimized profile model. The determined sensitivity can then be compared to a preset sensitivity to determine if the determined sensitivity is less than or equal to the preset sensitivity coefficient.
- a confidence interval is determined for each profile parameter of the optimized profile model.
- the determined confidence interval can then be compared to a preset confidence interval to determine if the determined confidence interval is less than or equal to the preset confidence interval.
- the preset confidence interval may be set to any number of sigma, such as three-sigma.
- step 312 if the one or more termination criteria are not met, the optimized profile model is modified and steps 308 and 310 are iterated.
- the optimized profile model is modified to reduce the number of profile parameters used to characterize the optimized profile model used in iterating step 308 .
- optimized profile model 800 is characterized by six profile parameters (i.e., thickness of a first thin film layer (t 1 ), thickness of a second thin film layer (t 2 ), thickness of a third thin film layer (t 3 ), bottom critical dimension (BCD), a top critical dimension (TCD), and a height (h)).
- step 312 FIG. 3
- optimized profile model 800 is modified as optimized profile model 802 by eliminating the bottom critical dimension (BCD).
- Optimized profile model 802 is then used in iterating step 308 ( FIG. 3 ).
- a user can specify the modification to the optimized profile model.
- selection of the profile parameter to be eliminated is one way to specify the modification to the optimized profile model.
- the selection of the profile parameter to be eliminated can be made using one or more selection criteria, such as correlation, sensitivity, confidence interval, and the like.
- the same machine learning system is used. Because the optimized profile model used in generating the simulated diffraction signal in step 308 includes the same or fewer profile parameters than the initial profile model used to train the machine learning system in step 302 , the machine learning system does not need to be retrained, which reduces the amount of time to generate the simulated diffraction signal in step 308 .
- a profile refinement process can be used to select at least one profile parameter of the optimized profile model and set the at least one profile parameter to a determined value.
- the at least one profile parameter can be selected using one or more selection criteria, such as correlation, fabrication process knowledge, historical information, the ability to obtain measurements from metrology tools, and the like.
- the determined value for the at least one profile parameter can be obtained from a variety of sources, such as specific measurements of the at least one profile parameter, profile extraction, theoretical and/or empirical data, estimates based on simulations of fabrication recipes using semiconductor fabrication simulation systems, mathematical and/or statistical techniques, averaging techniques, and the like.
- a selection criteria includes a correlation of at least 0.95 or higher.
- an optimized profile model includes a width parameter and a thickness parameter with a correlation greater than 0.95.
- the width parameter and/or the thickness parameter is selected and set to a determined value.
- the thickness parameter in the example above is selected.
- the determined value is obtained using an averaging technique. More particularly, in the present example, multiple thickness measurements of the selected thickness parameter on a wafer are obtained. An average thickness measurement of the selected thickness parameter is then calculated from the multiple thickness measurements. The selected thickness parameter is then set to the average thickness measurement.
- a selected profile parameter can be set to any value.
- a selected profile parameter is preferably set based on a constraint of the library, such as the resolution of the library. For example, if a profile process is used with a machine learning system and an average thickness measurement is 50.25 nanometers, then the selected thickness parameter can be set to 50.25 nanometers. However, if a profile process is used with a library-based system and the library includes thickness parameters at intervals of 50, 55, and 60 nanometers, then the selected thickness parameter is set to 50 nanometers.
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Abstract
Description
where i represents the ith member of the vector and p is an arbitrary number associated with the metric. The first vector is the set of signal values for a first diffraction signal, and the second vector is the corresponding set of signal values for a second diffraction signal.
S=[tan ψ1 tan ψ2 . . . tan ψn/2 cos Δ1 cos Δ2 . . . cos Δn]
where i represents the ith point for comparison, n is the total number of points of comparison.
where xi and yi is a pair of profile parameters,
where i is the signal point, typically at a preset wavelength, n is the number of signal points, S0 is the diffraction signal value using nominal values of profile parameters, S1 is the diffraction signal value using nominal plus change in one of the profile parameters.
σ=√{square root over ((([1/(N−1)])*(x i −x av)2))}{square root over ((([1/(N−1)])*(x i −x av)2))}
where N is the number of measurements, xi is the ith value of the profile parameter x, and xav is the average value of the profile parameter x. In the present exemplary embodiment, a confidence interval of 3 sigmas can be used.
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